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Complexity and Accuracy of Hand-Crafted Detection Methods Compared to Convolutional Neural Networks

机译:与卷积神经网络相比的人工检测方法的复杂性和准确性

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Even though Convolutional Neural Networks have had the best accuracy in the last few years, they have a price in term of computational complexity and memory footprint, due to a large number of multiply-accumulate operations and model parameters. For embedded systems, this complexity severely limits the opportunities to reduce power consumption, which is dominated by memory read and write operations. Anticipating the oncoming integration into intelligent sensor devices, we compare hand-crafted features for the detection of a limited number of objects against some typical convolutional neural network architectures. Experiments on some state-of-the-art datasets, addressing detection tasks, show that for some problems the increased complexity of neural networks is not reflected by a large increase in accuracy. Moreover, our analysis suggests that for embedded devices hand-crafted features are still competitive in terms of accuracy/complexity trade-offs.
机译:尽管卷积神经网络在最近几年中具有最高的准确性,但是由于大量的乘法累加运算和模型参数,它们在计算复杂性和内存占用方面都付出了代价。对于嵌入式系统,这种复杂性严重限制了降低功耗的机会,而功耗主要由存储器的读写操作决定。预期即将集成到智能传感器设备中,我们将手工制作的功能与一些典型的卷积神经网络体系结构进行比较,以检测数量有限的物体。对一些最新数据集进行的实验(处理检测任务)表明,对于某些问题,神经网络复杂性的提高并未被准确性的大幅提高所反映。此外,我们的分析表明,对于嵌入式设备,手工制作的功能在准确性/复杂性的权衡方面仍然具有竞争力。

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